Chen Yifan, Gunawan Erry, Low Kay Soon, Wang Shih-Chang, Soh Cheong Boon, Putti Thomas Choudary
School of Engineering, University of Greenwich, Kent ME44TB, UK.
IEEE Trans Biomed Eng. 2008 Aug;55(8):2011-21. doi: 10.1109/TBME.2008.921136.
This paper studies the possibility of distinguishing between benign and malignant masses by exploiting the morphology-dependent temporal and spectral characteristics of their microwave backscatter response in ultra-wideband breast cancer detection. The spiculated border profiles of 2-D breast masses are generated by modifying the baseline elliptical rings based upon the irregularity of their peripheries. Furthermore, the single- and multilayer lesion models are used to characterize a distinct mass region followed by a sharp transition to background, and a blurred mass border exhibiting a gradual transition to background, respectively. Subsequently, the complex natural resonances (CNRs) of the backscatter microwave signature can be derived from the late-time target response and reveal diagnostically useful information. The fractional sequence CLEAN algorithm is proposed to estimate the lesions' delay intervals and identify the late-time responses. Finally, it is shown through numerical examples that the locations of dominant CNRs are dependent on the lesion morphologies, where 2-D computational breast phantoms with single and multiple lesions are investigated. The analysis is of potential use for discrimination between benign and malignant lesions, where the former usually possesses a better-defined, more compact shape as opposed to the latter.
本文研究了在超宽带乳腺癌检测中,通过利用良性和恶性肿块微波后向散射响应的形态相关时间和频谱特征来区分它们的可能性。二维乳腺肿块的毛刺状边界轮廓是通过根据其周边的不规则性修改基线椭圆环生成的。此外,单层和多层病变模型分别用于表征具有清晰边界与背景形成鲜明过渡的独特肿块区域,以及具有模糊边界与背景呈现逐渐过渡的肿块区域。随后,后向散射微波特征的复自然共振(CNRs)可从晚期目标响应中推导出来,并揭示具有诊断价值的信息。提出了分数序列CLEAN算法来估计病变的延迟间隔并识别晚期响应。最后,通过数值示例表明,主要CNRs的位置取决于病变形态,其中研究了具有单个和多个病变的二维计算乳腺体模。该分析对于区分良性和恶性病变具有潜在用途,其中前者通常具有比后者更清晰、更紧凑的形状。